Feature Selection
Feature selection aims to identify the most relevant subset of features from a larger dataset, improving model performance, interpretability, and efficiency. Current research emphasizes developing novel algorithms, including those based on neural networks (e.g., RelChaNet), genetic algorithms, and large language models (LLMs), to select features effectively and efficiently, often incorporating techniques like causal inference and uncertainty quantification. These advancements are crucial for various applications, such as medical diagnosis, financial prediction, and recommender systems, where reducing dimensionality and improving model explainability are paramount. The field is also actively exploring new evaluation metrics and addressing challenges like fairness and privacy in feature selection.
Papers
Regularization Through Simultaneous Learning: A Case Study on Plant Classification
Pedro Henrique Nascimento Castro, Gabriel Cássia Fortuna, Rafael Alves Bonfim de Queiroz, Gladston Juliano Prates Moreira, Eduardo José da Silva Luz
Finding the Pillars of Strength for Multi-Head Attention
Jinjie Ni, Rui Mao, Zonglin Yang, Han Lei, Erik Cambria